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Thesis Defence – Nafiz Emir Eğilli (MSFE)
Thesis Defence – Nafiz Emir Eğilli (MSFE)
Asst. Prof. Dr. Emrah Ahi– Advisor
Date: 13.05.2025
Time: 16:30
Location: Özyeğin University Altunizade Campus - Classroom ALT 101
“From Headlines To Predictions: Using VADER To Construct a Sentiment-Based Market Index”
Asst. Prof. Dr. Emrah Ahi, Özyeğin University
Asst. Prof. Dr. Levent Güntay, Özyeğin University
Asst. Prof. Dr. Rıza Ergün Arsal, İstanbil Bilgi University
Abstract:
This thesis introduces a sentiment-based decision-support model that transforms daily financial news headlines into structured quantitative signals for investment analysis. The study focuses on 43 actively traded stocks, primarily listed on the S&P 500 index, using a two-year dataset of daily headlines collected from publicly available sources. Sentiment scores are generated through a custom framework based on the VADER lexicon and converted into time series. These scores are then evaluated in three main areas: assessing predictive power using Ordinary Least Squares (OLS) regression models, ranking assets for sentiment-driven portfolio strategies, and serving as explanatory variables in asset pricing models such as Capital Asset Pricing Model (CAPM) and Fama-French. Results show that the model provides both statistical and practical value, outperforming market benchmarks under basic portfolio construction methods.
Keywords: Sentiment Analysis, Financial Headlines, Quantitative Finance, OLS Regression, Portfolio Construction, Fama-French Model
Bio:
Nafiz Emir Eğilli is a graduate student in the Financial Engineering and Risk Management MSc program at Özyeğin University. He is currently working in the financial technology sector, focusing on quantitative analysis and data-driven decision-support systems. This thesis aligns with his professional work, combining sentiment analysis with traditional financial modeling to develop innovative investment tools.